Effacer les filtres
Effacer les filtres

Statistical features gives a probability one for all features, while importing ensemble table to diagnostic feature designer.

2 vues (au cours des 30 derniers jours)
I want to select statistical features from raw signals data obtained for four different faultCodition, yet when uploading the time table shown below to the Diagnostic Features Designer App. All the statistical features appear to have a probability of one for different faultCodes. Kindly any hint on this to rank the features importance.
  2 commentaires
Image Analyst
Image Analyst le 22 Oct 2022
What toolbox is this in? And you forgot to attach your data.
sed
sed le 22 Oct 2022
I am importing the data shown in the screenshots to Diagnostic features designer app.

Connectez-vous pour commenter.

Réponses (1)

Akshat Dalal
Akshat Dalal le 1 Jan 2024
Hi Sed,
I understand that you want to rank features using the Diagnostic Feature Designer App but are getting a probability of one for different fault conditions. This might indicate that the features are not discriminative enough for the fault conditions you are trying to classify. To address this issue and rank the feature importance more effectively, you can try the following approaches:
  1. Feature Engineering: Experiment with different types of features, including time-domain, frequency-domain, and time-frequency domain features. Features such as FFT coefficients, wavelet transforms, or higher-order statistics might provide better discrimination. To read more, please refer the following documentation: https://www.mathworks.com/discovery/feature-engineering.html
  2. Class Balancing: If your dataset is imbalanced, use techniques such as oversampling the minority class, undersampling the majority class, or generating synthetic samples with SMOTE to balance the classes before feature selection. To read more, please refer the following documentation: https://www.mathworks.com/help/stats/classification-with-imbalanced-data.html
  3. Cross-validation: Use cross-validation to evaluate the discriminative power of features across multiple subsets of your data to ensure that the feature importance ranking is robust. To read more, please refer the following documentation: https://www.mathworks.com/discovery/cross-validation.html
  4. Visualization: Use visualization tools such as t-SNE or UMAP to visualize the separability of the classes in the feature space. This can give you insights into whether the features are capable of distinguishing between different fault conditions. To read more, please refer the following documentation: https://www.mathworks.com/help/stats/t-sne.html
Hope this helps!

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by